Yexu Zhou, Hai-qiang Zhao, Yiran Huang, Tobias Röddiger, Murat Kurnaz, T. Riedel, M. Beigl
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引用次数: 0
摘要
由于数据收集和标注的复杂性,影响了数据集的规模和代表性,基于传感器的 HAR 模型在跨主体泛化方面面临挑战。虽然数据扩增已成功应用于自然语言和图像处理等领域,但其在 HAR 中的应用仍未得到充分探索。本研究提出了基于梯度的两阶段数据扩增优化框架 AutoAugHAR。AutoAugHAR 的设计考虑到了候选扩增操作的独特属性以及 HAR 任务的独特性质和挑战。值得注意的是,它能在 HAR 模型训练期间优化增强管道,而不会大幅延长训练时间。在使用五种 HAR 模型对八个基于惯性测量单位的基准数据集进行的评估中,与其他领先的数据增强框架相比,AutoAugHAR 展示了卓越的鲁棒性和有效性。AutoAugHAR 的一个显著特点是其与模型无关的设计,可与任何 HAR 模型无缝集成,无需进行结构修改。此外,我们还在其他相邻领域的四个数据集上展示了 AutoAugHAR 的通用性和灵活扩展性。我们强烈建议将其整合为 HAR 模型训练的标准协议,并将其作为开源工具发布1。
AutoAugHAR: Automated Data Augmentation for Sensor-based Human Activity Recognition
Sensor-based HAR models face challenges in cross-subject generalization due to the complexities of data collection and annotation, impacting the size and representativeness of datasets. While data augmentation has been successfully employed in domains like natural language and image processing, its application in HAR remains underexplored. This study presents AutoAugHAR, an innovative two-stage gradient-based data augmentation optimization framework. AutoAugHAR is designed to take into account the unique attributes of candidate augmentation operations and the unique nature and challenges of HAR tasks. Notably, it optimizes the augmentation pipeline during HAR model training without substantially extending the training duration. In evaluations on eight inertial-measurement-units-based benchmark datasets using five HAR models, AutoAugHAR has demonstrated superior robustness and effectiveness compared to other leading data augmentation frameworks. A salient feature of AutoAugHAR is its model-agnostic design, allowing for its seamless integration with any HAR model without the need for structural modifications. Furthermore, we also demonstrate the generalizability and flexible extensibility of AutoAugHAR on four datasets from other adjacent domains. We strongly recommend its integration as a standard protocol in HAR model training and will release it as an open-source tool1.